Gauss–Newton-type methods for bilevel optimization

被引:0
作者
Jörg Fliege
Andrey Tin
Alain Zemkoho
机构
[1] Management Sciences and Information Systems (CORMSIS),Centre for Operational Research
[2] University of Southampton,School of Mathematical Sciences
来源
Computational Optimization and Applications | 2021年 / 78卷
关键词
Bilevel optimization; Value function reformulation; Partial exact penalization; Gauss-Newton method;
D O I
暂无
中图分类号
学科分类号
摘要
This article studies Gauss–Newton-type methods for over-determined systems to find solutions to bilevel programming problems. To proceed, we use the lower-level value function reformulation of bilevel programs and consider necessary optimality conditions under appropriate assumptions. First, under strict complementarity for upper- and lower-level feasibility constraints, we prove the convergence of a Gauss–Newton-type method in computing points satisfying these optimality conditions under additional tractable qualification conditions. Potential approaches to address the shortcomings of the method are then proposed, leading to alternatives such as the pseudo or smoothing Gauss–Newton-type methods for bilevel optimization. Our numerical experiments conducted on 124 examples from the recently released Bilevel Optimization LIBrary (BOLIB) compare the performance of our method under different scenarios and show that it is a tractable approach to solve bilevel optimization problems with continuous variables.
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页码:793 / 824
页数:31
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